Laplacian Eigenmaps feature conversion and particle swarm optimization-based deep neural network for machine condition monitoring

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Abstract

This work reports a novel method by fusing Laplacian Eigenmaps feature conversion and deep neural network (DNN) for machine condition assessment. Laplacian Eigenmaps is adopted to transform data features from original high dimension space to projected lower dimensional space, the DNN is optimized by the particle swarm optimization algorithm, and the machine run-to-failure experiment were investigated for validation studies. Through a series of comparative experiments with the original features, two other effective space transformation techniques, Principal Component Analysis (PCA) and Isometric map (Isomap), and two other artificial intelligence methods, hidden Markov model (HMM) as well as back-propagation neural network (BPNN), the present method in this paper proved to be more effective for machine operation condition assessment.

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Yuan, N., Yang, W., Kang, B., Xu, S., & Wang, X. (2018, December 13). Laplacian Eigenmaps feature conversion and particle swarm optimization-based deep neural network for machine condition monitoring. Applied Sciences (Switzerland). MDPI AG. https://doi.org/10.3390/app8122611

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